Abstract

Specular reflection removal is indispensable to many computer vision tasks. However, most existing methods fail or degrade in complex real scenarios for their individual drawbacks. Benefiting from the light field imaging technology, this paper proposes a novel and accurate approach to remove specularity and improve image quality. We first capture images with specularity by the light field camera (Lytro ILLUM). After accurately estimating the image depth, a simple and concise threshold strategy is adopted to cluster the specular pixels into “unsaturated” and “saturated” category. Finally, a color variance analysis of multiple views and a local color refinement are individually conducted on the two categories to recover diffuse color information. Experimental evaluation by comparison with existed methods based on our light field dataset together with Stanford light field archive verifies the effectiveness of our proposed algorithm.

Highlights

  • Image specular reflection has long been problematic in computer vision tasks [1]

  • They appear as surface features, but they are artifacts caused by illumination changes from different viewing angles [2]

  • Most algorithms in computer vision such as segmentation [3], or stereo matching [4], recognition [5,6,7,8,9], image analysis [10,11,12,13,14]and tracking [15] ignore the presence of specular pixels and work under the assumption of perfect diffuse surfaces

Read more

Summary

Introduction

Image specular reflection has long been problematic in computer vision tasks [1] They appear as surface features, but they are artifacts caused by illumination changes from different viewing angles [2]. Multiple-image based approaches involve an image sequence of the same scene taken either from different viewpoints [16], with different illumination [17] or utilizing an additional polarizing filter. Obtaining such an PLOS ONE | DOI:10.1371/journal.pone.0156173.

Related work
Proposed Method
Experiments & Comparisons
Conclusions
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call